Deep learning for inverse problems with unknown operator

Miguel Del Álamo*

*Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

1 Citation (Scopus)
24 Downloads (Pure)

Abstract

We consider ill-posed inverse problems where the forward operator T is unknown, and instead we have access to training data consisting of functions fi and their noisy images Tfi. This is a practically relevant and challenging problem which current methods are able to solve only under strong assumptions on the training set. Here we propose a new method that requires minimal assumptions on the data, and prove reconstruction rates that depend on the number of training points and the noise level. We show that, in the regime of “many” training data, the method is minimax opti-mal. The proposed method employs a type of convolutional neural networks (U-nets) and empirical risk minimization in order to “fit” the unknown op-erator. In a nutshell, our approach is based on two ideas: the first is to relate U-nets to multiscale decompositions such as wavelets, thereby linking them to the existing theory, and the second is to use the hierarchical structure of U-nets and the low number of parameters of convolutional neural nets to prove entropy bounds that are practically useful. A significant difference with the existing works on neural networks in nonparametric statistics is that we use them to approximate operators and not functions, which we argue is mathematically more natural and technically more convenient.

Original languageEnglish
Pages (from-to)723-768
Number of pages46
JournalElectronic Journal of Statistics
Volume17
Issue number1
DOIs
Publication statusPublished - 2023

Keywords

  • convolutional neural networks
  • deep learning
  • Inverse problems
  • nonparametric statistics
  • unknown operator

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